Automated Vulnerability Discovery and Exploitation in the Internet of Things

Recently, automated software vulnerability detection and exploitation in <i>Internet of Things</i> (IoT) has attracted more and more attention, due to IoT’s fast adoption and high social impact. However, the task is challenging and the solutions are non-trivial: the existing methods have...

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Bibliographic Details
Main Authors: Zhongru Wang, Yuntao Zhang, Zhihong Tian, Qiang Ruan, Tong Liu, Haichen Wang, Zhehui Liu, Jiayi Lin, Binxing Fang, Wei Shi
Format: Article
Language:English
Published: MDPI AG 2019-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/15/3362
Description
Summary:Recently, automated software vulnerability detection and exploitation in <i>Internet of Things</i> (IoT) has attracted more and more attention, due to IoT’s fast adoption and high social impact. However, the task is challenging and the solutions are non-trivial: the existing methods have limited effectiveness at discovering vulnerabilities capable of compromising IoT systems. To address this, we propose an Automated Vulnerability Discovery and Exploitation framework with a Scheduling strategy, <i>AutoDES</i> that aims to improve the efficiency and effectiveness of vulnerability discovery and exploitation. In the vulnerability discovery stage, we use our <i>Anti-Driller</i> technique to mitigate the “path explosion” problem. This approach first generates a specific input proceeding from symbolic execution based on a <i>Control Flow Graph</i> (CFG). It then leverages a mutation-based fuzzer to find vulnerabilities while avoiding invalid mutations. In the vulnerability exploitation stage, we analyze the characteristics of vulnerabilities and then propose to generate exploits, via the use of several proposed attack techniques that can produce a shell based on the detected vulnerabilities. We also propose a genetic algorithm (GA)-based scheduling strategy (AutoS) that helps with assigning the computing resources dynamically and efficiently. The extensive experimental results on the RHG 2018 challenge dataset and the BCTF-RHG 2019 challenge dataset clearly demonstrate the effectiveness and efficiency of the proposed framework.
ISSN:1424-8220